New York Advances Two Major Bills to Regulate AI Industry
New York legislators are considering two significant AI bills that could establish transparency requirements and safety standards for AI companies operating in the state.
New York legislators are considering two significant AI bills that could establish transparency requirements and safety standards for AI companies operating in the state.
Transformers process tokens in parallel, losing sequence information. Four positional encoding methods—sinusoidal, learned, RoPE, and ALiBi—solve this fundamental challenge differently.
New research warns that deepfake-powered fraud operations have scaled dramatically, with synthetic media scams now operating at industrial levels across multiple sectors.
A technical deep-dive into constructing enterprise-ready AI agents with hybrid retrieval systems, provenance tracking for citations, self-repair mechanisms, and persistent episodic memory.
A developer built OntoGuard, an ontology-based firewall for AI agents using semantic web technologies like OWL and SHACL to validate agent actions against predefined rules, offering a new approach to AI safety.
OpenAI's decision to retire GPT-4o has triggered intense backlash, revealing deep emotional attachments users form with AI systems and raising critical questions about synthetic companion safety.
A comprehensive guide to evaluating AI agents covering benchmarks, testing frameworks, and metrics for measuring autonomous system performance in real-world applications.
Oscar-nominated director Darren Aronofsky embraces AI video generation for historical documentary filmmaking, signaling a significant shift in Hollywood's approach to synthetic media production.
Researchers propose rethinking how evaluation rubrics are generated for LLM judges and reward models, addressing critical challenges in assessing open-ended AI outputs.
New research reveals that standard LoRA fine-tuning can achieve performance comparable to sophisticated variants when learning rates are properly optimized, challenging assumptions about adapter complexity.
Researchers propose a novel approach to improve LLM reasoning by discovering and replaying latent actions, potentially reducing inference costs while maintaining reasoning quality.
New research presents A²-LLM, an end-to-end framework that unifies conversational AI with audio avatar generation, enabling seamless speech-driven digital humans through large language models.